Naive Bayesian, SVM, Random Forest Classifier, and Deeplearing (LSTM) on top of Keras and wod2vec TF-IDF were used respectively in SMS classification
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Updated
May 12, 2021 - Jupyter Notebook
Naive Bayesian, SVM, Random Forest Classifier, and Deeplearing (LSTM) on top of Keras and wod2vec TF-IDF were used respectively in SMS classification
📧 ML project focused on email spam classification, demonstrating data preprocessing, model training, and evaluation using Python and scikit-learn.
The project leverages Naive Bayes Classifiers, a family of algorithms based on Bayes’ Theorem, which presumes independence between predictive features. This theorem is crucial for calculating the likelihood of a message being spam based on various characteristics of the data.
classify the sms in different categories.
"Spam SMS Classifier using TF-IDF and Naive Bayes. Detects spam messages with high accuracy.
In this repository, I uploaded all the projects/tasks in Data science Internship at Bharat Intern.
This repo contains code for EMAIL/SMS SPAM classification.
This project is a SMS spam classifier which detect whether the SMS is spam or ham using the multinomial Naive Bayes algorithm along the side of BOW/TF-IDF in NLP
Contains my custom implementation of various machine learning models and analysis.
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